From llm-application-dev
Guides selection and optimization of embedding models for semantic search and RAG, including chunking strategies and model comparisons.
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Guide to selecting and optimizing embedding models for vector search applications.
Guide to selecting and optimizing embedding models for vector search applications.
| Model | Dimensions | Max Tokens | Best For |
|---|---|---|---|
| voyage-3-large | 1024 | 32000 | Claude apps (Anthropic recommended) |
| voyage-3 | 1024 | 32000 | Claude apps, cost-effective |
| voyage-code-3 | 1024 | 32000 | Code search |
| voyage-finance-2 | 1024 | 32000 | Financial documents |
| voyage-law-2 | 1024 | 32000 | Legal documents |
| text-embedding-3-large | 3072 | 8191 | OpenAI apps, high accuracy |
| text-embedding-3-small | 1536 | 8191 | OpenAI apps, cost-effective |
| bge-large-en-v1.5 | 1024 | 512 | Open source, local deployment |
| all-MiniLM-L6-v2 | 384 | 256 | Fast, lightweight |
| multilingual-e5-large | 1024 | 512 | Multi-language |
Document → Chunking → Preprocessing → Embedding Model → Vector
↓
[Overlap, Size] [Clean, Normalize] [API/Local]
Full template library and detailed worked examples live in references/details.md. Read that file when you need the concrete templates.
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First indexed Jun 3, 2026
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Guides selection and optimization of embedding models for semantic search and RAG, including chunking strategies and model comparisons.
Selects and optimizes embedding models for semantic search and RAG applications. Covers model comparison, chunking strategies, and dimension reduction. Provides templates for OpenAI and local embeddings.
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